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Advanced Design Application

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Title: Advanced Design Application


1
Advanced Design Application Data Analysis for
Field-Portable XRF
A Series of Web-based Seminars Sponsored by
Superfunds Technology Field Services Division
Session 6 QA for Session 5 Module 6.1 Dynamic
Work Strategies Part 1
2
How To . . .
  • Ask questions
  • ? button on CLU-IN page
  • Control slides as presentation proceeds
  • manually advance slides
  • Review archived sessions
  • http//www.clu-in.org/live/archive.cfm
  • Contact instructors

3
QA For Session 5 Quality Control
4
Module 6.1Dynamic Work Strategies Part 1
5
Improving XRF Data Collection Performance
Requires
  • Planning systematically (CSM)
  • Improving representativeness
  • Increasing information available for
    decision-making
  • Addressing the unknown with dynamic work
    strategies

6
Systematic Planning and Data Collection Design
  • Systematic planning defines decisions, decision
    units, and sample support requirements
  • Systematic planning identifies sources of
    decision uncertainty and strategies for
    uncertainty management
  • Clearly defined cleanup standards are critical to
    the systematic planning process
  • Conceptual Site Models (CSMs) play a foundational
    role

Planning Systematically
7
The Conceptual Site Model (CSM) is Key to
Successful Projects
Not to be confused with a fate/transport or
exposure scenario model (although these may be
components).
  • THE basis for cost-effective, confident decisions
  • Decision-makers mental picture of site
    characteristics pertinent to risk and cleanup
  • A CSM can include any component that represents
    contaminant populations to make predictions about
  • Nature, extent, and fate of contamination,
  • Exposure to contamination, and
  • Strategies to reduce risks from contamination

Planning Systematically
8
How well does the idealized mental model match
reality?
Planning Systematically
9
The World is Usually Messier Than Models Portray
Planning Systematically
Slide adapted from Columbia Technologies, Inc.,
2003
(Subsurface CSM from high density data using
DP-MIP sensing)
10
CSMs Are Critical!!
  • Whether or not openly articulated, the CSM is the
    basis of all site decisions.
  • The CSM is the working hypothesis about the
    sites physical reality, so working without a CSM
    is like working blind-folded!

Planning Systematically
11
CSMs Articulate Uncertainty
  • CSM captures understanding about site conditions
  • CSM identifies uncertainty that prevents
    confident decision-making
  • A well-articulated CSM serves as the point of
    consensus about uncertainty sources
  • Data collection needs and design flow from the
    CSM
  • Data collection to reduce CSM uncertainties
  • Data collection to test CSM assumptions
  • The CSM is livingas new data become available,
    the CSM is revisited, updated, and matures

Planning Systematically
12
How Might a CSM Appear?
Planning Systematically
13
Other Possibilities
Planning Systematically
14
The CSM and XRF
  • The following CSM elements are critical to
    consider when conducting systematic planning that
    involves use of the XRF
  • Decisions driving the data collection
  • Spatial definition of decisions or action levels
  • Contaminants of concern and their action levels
  • Matrix characteristics/co-contaminants that might
    affect XRF
  • Spatial contamination patterns (shotgun, air
    deposition, etc.)
  • Degree of short-scale (intra-sample)
    heterogeneity at action levels
  • Degree of longer-scale (between sample)
    heterogeneity at action levels
  • Vertical layering of contaminants

Planning Systematically
15
Improving Data Representativeness
  • Sample support
  • matching sample support with decision needs
  • field of view for in situ analyses
  • Controlling within-sample heterogeneity
  • Appropriate sample preparation important (see EPA
    EPA/600/R-03/027 for additional detail)
  • Uncertainty effects quantified by appropriate
    sub-sample replicate analyses
  • Controlling short-scale heterogeneity
  • multi-increment sampling
  • aggregating in situ measurements

Improving Representativeness
16
Verifying Sample Preparation by XRF
  • XRF can play a unique role in verifying sample
    preparation
  • XRF measurements are non-destructive
  • XRF measurements are fast
  • Works when XRF-detectable metals are either
    primary COCs or are correlated with primary COCs
  • Perform multiple (e.g., 5 to 10) direct
    measurements on sample (bagged or exposed) pre-
    and post-preparation
  • Target samples expected to have contamination
    around action levels
  • Review resulting measurement variability
  • Can be part of a DMA and/or part of on-going QC

Improving Representativeness
17
Within-Sample Variability is a Function of
Concentration
  • 100 bagged samples
  • Analyzed multiple times for lead
  • Variability observed a function of lead present
  • As concentrations rise, sample prep becomes
    increasingly important
  • Important point to remember as discussion turns
    to MI sampling

Improving Representativeness
18
Multi-Increment Sampling?Compositing?
Improving Representativeness
19
Guidance on Multi-Increment Sampling/Compositing
is Conflicting
  • Verification of PCB Spill Cleanup by Sampling and
    Analysis (EPA-560/5-85-026, August, 1985)
  • up to 10 adjacent samples allowed
  • Cleanup Standards for Ground Water and Soil,
    Interim Final Guidance (State of Maryland, 2001)
  • no more than 3 adjacent samples allowed
  • SW-846 Method 8330b (EPA Rev 2, October, 2006)
  • 30 adjacent samples recommended
  • Draft Guidance on Multi-Increment Soil Sampling
    (State of Alaska, 2007)
  • 30 50 samples for compositing

Improving Representativeness
20
Multi-Increment Sampling vs. Compositing
Improving Representativeness
21
Multi-Increment Sampling vs. Compositing
  • Multi-increment sampling a strategy to control
    the effects of heterogeneity cost-effectively
    multi-increment averaging
  • Compositing a strategy to reduce overall
    analytical costs when conditions are favorable
    composite searching topic in next module

Improving Representativeness
22
Multi-Increment Averaging
  • Applicable when goal is to get a better estimate
    of average concentration over some specified area
    or volume of soil
  • Used to cost-effectively suppress short-scale
    heterogeneity
  • Multiple sub-samples contribute to sample that is
    analyzed
  • Sub-samples systematically distributed over an
    area equivalent to or less than decision
    requirements
  • Effective when the cost of analysis is
    significantly greater than the cost of sample
    acquisition

Improving Representativeness
23
Concept Applies to XRF In Situ, Bag, and Cup
Measurements
  • XRF in situ measurements - more measurements with
    shorter acquisition times is equivalent to
    multi-increment sampling (e.g., across a surface
    area or down a soil core)
  • XRF bag measurements - multi-increment sampling
    addresses sampling error while multiple
    measurements on bag substitutes for sample
    homogenization
  • XRF cup measurements - multi-increment sampling
    addresses sampling error
  • In general, MIS is not useful if an XRF can
    address the COCs of concern, although the
    concepts still apply

Improving Representativeness
24
How Many MI Sample Increments?
  • Assume goal is to estimate average concentration
    over decision unit (e.g., a yard)
  • VSP can be used to determine how many samples
    would be required if all were analyzed
  • VSP calculation requires knowledge of expected
    contamination levels and the variability present
  • Information can potentially be obtained by XRF
  • The number of increments should be at least as
    great as identified by VSP
  • Lumped into one MI sample for analysis?
  • Apportioned into several MI samples for analysis?

Improving Representativeness
25
One Additional XRF Basic Concept
  • Recall that XRF relative measurement error and DL
    decrease with increasing count time
  • Suppose one has established a DL goal and
    determined a necessary count time to achieve it
  • It doesnt matter whether one long shot is taken,
    or repeated shorter measurements with an average
    concentration determined from the shorter
    measurements!
  • This is why reporting ltDL XRF results can be very
    usefulwe need those results to calculate
    meaningful averages
  • Particularly important for repeated in situ
    measurements or repeated measurements of bagged
    samples

Improving Representativeness
26
How Many XRF Measurements for Bag or In Situ
Shots at a Particular Location?
  • Assume goal is to get an accurate estimate of
    average bag concentration, or the concentration
    at a particular location
  • Majority of cost of XRF deployment is sample
    preparation bagged sample XRF readings
    potentially circumvent costly sample prep
  • Select a bag or location with concentrations
    thought to be near action level
  • Identify required DL and estimate XRF measurement
    time required for DL along with expected
    analytical error at action level
  • Take ten shots and observe variability present
  • Select measurement numbers so that observed
    variability divided by square root of measurement
    number is less than expected analytical error at
    the action level

Improving Representativeness
27
Revisiting Bagged Soil Lead Example
  • Action level is 400 ppm
  • Around 400 ppm, XRF measurement error lt 5 for
    120-sec readings
  • Around 400 ppm, typical standard deviation 34
    ppm (or 8)
  • 4 30-sec shots per bag would reduce error for bag
    lead estimate to less than 5

Improving Representativeness
28
Aggregating XRF Measurements
  • Can be done either automatically by the XRF unit
    (if set up to do so) or manually by recording
    multiple measurements, downloading, and
    calculating averages for sets of measurements in
    a spreadsheet
  • If automatically, be aware that the XRF-reported
    error and DL will be incorrect for the
    measurement aggregate

Improving Representativeness
29
XRF Results Can Drive Number of Measurements
Dynamically
  • Applicable to in situ and bagged sample readings
  • XRF results quickly give a sense for what levels
    of contamination are present
  • Number of measurements can be adjusted
    accordingly
  • At background levels or very high levels, fewer
  • Maximum number when results are in range of
    action level
  • Particularly effective when looking for the
    presence or absence of contamination above/below
    an action level within a sample or within a
    decision unit

Improving Representativeness
30
Example
  • Bagged samples, measurements through bag
  • Need decision rule for measurement numbers for
    each bag
  • Action level 25 ppm
  • 3 bagged samples measured systematically across
    bag 10 times each
  • Average concentrations 19, 22, and 32 ppm
  • 30 measurements total

Improving Representativeness
(continued)
31
Example
  • Simple Decision Rule
  • if 1st measurement less than 10 ppm, stop, no
    action level problems
  • if 1st measurement greater than 50 ppm, stop,
    action level problems
  • if 1st measurement between 10 and 50 ppm, take
    another three measurements from bagged sample

Improving Representativeness
32
MI Warning!!
  • For sampling programs that use multi-increment
    (MI) sampling, one would expect MI sampling to
    significantly increase within sample
    heterogeneity. This would exacerbate the effects
    of poor sample preparation on either XRF cup
    analyses or off-site laboratory analyses (e.g.,
    ICP).

Improving Representativeness
33
Collaborative Data Sets Address Analytical and
Sampling Uncertainties
Increasing Information
34
Collaborative Data Sets Replacing Lab Data with
XRF
  • Goal replace more expensive traditional
    analytical results with cheaper field-analytics.
  • Same budget allows a lot more XRF data points,
    improving average concentration estimates
  • Assumptions
  • Cheaper method unbiased (or can be corrected)
  • Linear relationship exists w/ high correlation
    (SW-846 Method 6200 points to correlation
    coefficients gt0.9 as producing lab equivalent
    data)
  • Expensive traditional analyses used for QC
    purposes
  • Applicable to static or dynamic work plans
  • Requirements Method applicability study (DMA)
    to establish relationship between cheaper more
    expensive method may be necessary. Perform
    on-going QC to verify relationship holds.

Increasing Information
35
Collaborative Data Sets Blending XRF and Lab
Data for Mean Estimation
  • Goal estimate population mean by blending field
    data with laboratory data using an algorithm such
    as in Visual Sampling Plan (VSP)
  • Assumptions
  • Two methods, XRF and off-site laboratory
  • XRF data are unbiased, or can be corrected
  • Linear correlation exists and can be quantified
  • Static sampling program
  • Every location analyzed by field method, a subset
    analyzed by lab
  • Linear correlation determined from sample splits
    analyzed by both XRF and off site laboratory

Increasing Information
36
These Two Approaches Are Not Always Applicable
  • Issues with both previous approaches
  • Assume that traditional lab data are definitive
  • Assume that the linear relationship holds over
    the whole range of data encountered
  • Assume an excellent correlation
  • Assume the underlying contaminant distribution is
    normally distributed (in the 2nd approach)
  • These assumptions frequently do not hold in
    actual site projects.

Increasing Information
37
Often Linear Regression Analyses Are Not Possible
with Collaborative Data
  • Outlier problems
  • Non-linear relationships
  • Non-detects
  • Result data sets cannot be substituted or
    merged quantitatively

Increasing Information
38
Non-Parametric Analysis Can Be a Useful
Alternative
  • Decision focus is yes/no
  • Is contamination present at levels of concern?
  • Should a sample be sent off-site for more
    definitive analysis?
  • Goal is to identify investigation levels for
    real-time method that will guide decision making
  • Lower investigation level (LIL) for real-time
    result below which we are confident contamination
    is not present
  • Upper investigation level (UIL) above which we
    are confident contamination is present

Increasing Information
39
Selection of LIL and UIL Driven by Acceptable
Error Rates
  • Fraction of contaminated locations missed using
    a real-time investigation level false clean
    error rate
  • Fraction of clean locations identified as
    contaminated by a real-time investigation level
    false contaminated error rate
  • The lower the LIL, the lower the false clean
    error rate
  • The higher the UIL, the lower the false
    contaminated error rate

Increasing Information
40
and Costs
  • The greater the separation between the LIL and
    UIL, the greater the number of samples that may
    require confirmatory analysis
  • The break-even cost analysis for collaborative
    data collection
  • Crt/Cf lt (Nrt Nf)/Nrt
  • where
  • Crt cost of real-time,
  • Cf cost of lab analysis,
  • Nrt is the of real-time analyses, and
  • Nf is the expected number of confirmatory lab
    analyses

Increasing Information
41
Hypothetical Example
  • I False Clean
  • II Correctly Identified Contaminated
  • III Correctly Identified Clean
  • IV False Contaminated
  • I/(III)100 of contaminated samples missed
    by LIL (false clean rate)
  • I/(IIII)100 of clean samples that are
    contaminated
  • IV/(IIIV)100 of contaminated samples that
    are clean
  • IV/(IIIIV)100 of clean samples above the
    LIL (false contaminated rate)

Increasing Information
IL
(continued)
False Clean Rate 0 False Contaminated Rate
50
42
Hypothetical Example
  • I False Clean
  • II Correctly Identified Contaminated
  • III Correctly Identified Clean
  • IV False Contaminated
  • I/(III)100 of contaminated samples missed
    by LIL (false clean rate)
  • I/(IIII)100 of clean samples that are
    contaminated
  • IV/(IIIV)100 of contaminated samples that
    are clean
  • IV/(IIIIV)100 of clean samples above the
    LIL (false contaminated rate)

Increasing Information
IL
(continued)
False Clean Rate 25 False Contaminated Rate
0
43
Hypothetical Example
  • I False Clean
  • II Correctly Identified Contaminated
  • III Correctly Identified Clean
  • IV False Contaminated
  • I/(III)100 of contaminated samples missed
    by LIL (false clean rate)
  • I/(IIII)100 of clean samples that are
    contaminated
  • IV/(IIIV)100 of contaminated samples that
    are clean
  • IV/(IIIIV)100 of clean samples above the
    LIL (false contaminated rate)

Increasing Information
LIL
UIL
False Clean Rate 25 False Contaminated Rate 0
False Clean Rate 0 False Contaminated Rate 50
False Clean Rate 0 False Contaminated Rate 0
44
Next Session
  • Module 6.2
  • Addressing the Unknown

45
QA If Time Allows
46
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